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Bird Sound Detection Based on Binarized Convolutional Neural Networks

机译:基于二值化卷积神经网络的鸟声检测

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Bird Sound Detection (BSD) is helpful for monitoring biodiversity and in this regard, deep learning networks have shown good performance in BSD in recent years. However, such a complex network structure requires high memory resources and computing power at great cost for performing the extensive calculations required, which make it difficult to implement the hardware in BSD. Therefore, we designed an audio classification method for BSD using a Binarized Convolutional Neural Network (BCNN). The convolutional layers and fully connected layers of the original Convolutional Neural Network were binarized to two values. The Area Under ROC Curve (AUC) score of BCNN achieved comparable results with the CNN in an unseen evaluation. This paper proposes two networks (CNNs and BCNNs) for the BSD task of the IEEE AASP Challenge on the Detection and Classification of Acoustic Scenes and Events (DCASE2018). The Area Under ROC Curve (AUC) score of BCNN achieved comparable results with CNN on the unseen evaluation data. More importantly, the use of the BCNN could reduce the memory requirement and the hardware loss unit, which are of great significance to the hardware implementation of a bird sound detection system.
机译:鸟声音检测(BSD)有助于监测生物多样性,在这方面,近年来,深度学习网络在BSD中表现出良好的表现。然而,这种复杂的网络结构需要高存储器资源和计算功率,以实现所需的广泛计算,这使得难以在BSD中实现硬件。因此,我们设计了使用二值化卷积神经网络(BCNN)的BSD的音频分类方法。原始卷积神经网络的卷积层和完全连接的层被二值化为两个值。 ROC曲线(AUC)评分的区域的BCNN的得分与未经看不见的评估中的CNN达到了类似的结果。本文提出了两个网络(CNNS和BCNNS),用于对声学场景和事件的检测和分类(DCES2018)的IEEE AASP挑战的BSD任务。 ROC曲线(AUC)下的区域的BCNN的得分与未经说明的评估数据的CNN达到了类似的结果。更重要的是,使用BCNN可以降低存储器要求和硬件损耗单元,这对鸟类声音检测系统的硬件实现具有重要意义。

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